Recommender systems (RS) enhance user experiences by providing personalized content and are widely used by popular services like Apple Music, Spotify, Netflix, and YouTube to increase user engagement. However, these systems can also have significant economic implications, including exacerbating market concentration and reducing content diversity. This paper reviews recent economic literature on RS, emphasizing their dual role as both beneficial tools and potential sources of market distortion. The paper underscores the necessity for policies informed by economic research to balance the benefits of RS against their associated risks.
Calzolari, G., Pastorello, S., Denicolò, V., Calvano, E. (2024). Artificial intelligence recommendations: evidence, issues, and policy. OXFORD REVIEW OF ECONOMIC POLICY, 40(4), 843-853 [10.1093/oxrep/grae048].
Artificial intelligence recommendations: evidence, issues, and policy
Giacomo Calzolari;sergio pastorello;vincenzo denicolò;Emilio Calvano
2024
Abstract
Recommender systems (RS) enhance user experiences by providing personalized content and are widely used by popular services like Apple Music, Spotify, Netflix, and YouTube to increase user engagement. However, these systems can also have significant economic implications, including exacerbating market concentration and reducing content diversity. This paper reviews recent economic literature on RS, emphasizing their dual role as both beneficial tools and potential sources of market distortion. The paper underscores the necessity for policies informed by economic research to balance the benefits of RS against their associated risks.File | Dimensione | Formato | |
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